论文标题
深度潜力:从相空间的快照中回收重力电位
Deep Potential: Recovering the gravitational potential from a snapshot of phase space
论文作者
论文摘要
银河系动力学领域的主要目标之一是恢复引力潜力领域。映射电势将使我们能够在整个银河系中确定物质的空间分布 - 重生和黑暗。我们提出了一种新的方法,用于从恒星的相位位置的快照中确定重力场,仅基于最小的物理假设,该假设利用了深度学习领域最近开发的工具。我们首先在观察到的恒星的六维相空间坐标的样品上训练归一化流量,从而获得了分布函数的平滑,可区分的近似值。然后,使用无碰撞的玻尔兹曼方程,我们发现重力电势(由前馈神经网络表示),从而使该分布函数静止。我们称其为“深度电位”的方法比以前的参数方法更灵活,后者适合分布函数的分析模型和数据潜力的分析模型。我们在模拟数据集上展示了深厚的潜力,并在各种非理想条件下证明了其鲁棒性。深厚的潜力是绘制银河系和其他恒星系统的密度的有前途的方法,使用恒星位置和运动学的富裕数据集现在由GAIA和地面光谱调查提供。
One of the major goals of the field of Milky Way dynamics is to recover the gravitational potential field. Mapping the potential would allow us to determine the spatial distribution of matter - both baryonic and dark - throughout the Galaxy. We present a novel method for determining the gravitational field from a snapshot of the phase-space positions of stars, based only on minimal physical assumptions, which makes use of recently developed tools from the field of deep learning. We first train a normalizing flow on a sample of observed six-dimensional phase-space coordinates of stars, obtaining a smooth, differentiable approximation of the distribution function. Using the Collisionless Boltzmann Equation, we then find the gravitational potential - represented by a feed-forward neural network - that renders this distribution function stationary. This method, which we term "Deep Potential," is more flexible than previous parametric methods, which fit restricted classes of analytic models of the distribution function and potential to the data. We demonstrate Deep Potential on mock datasets, and demonstrate its robustness under various non-ideal conditions. Deep Potential is a promising approach to mapping the density of the Milky Way and other stellar systems, using rich datasets of stellar positions and kinematics now being provided by Gaia and ground-based spectroscopic surveys.